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1
Through the “Fiji National HIV Surge Strategic Plan 2024-2027,” the ministry will address areas for
Prevention, Diagnostics, Treatment and Care, the Continuum of Care and an intense Monitoring,
Evaluation, Accountability and Learning Framework for the government. This strategic plan aims
to d
...
ecentralise services and bring services closer to individuals in a non-stigmatising and
discriminatory manner nationwide.
more
The Global Aids Strategy 2026-2031
recommended
United- Towards Ending AIDS. The Global AIDS Strategy 2026-2031 focuses global efforts for the future of the AIDS response to end AIDS as a public health threat by 2030 and sustain the HIV response after 2030. This is a strategy uniting the world.
The Strategy will shape the June 2026 United Natio
...
ns General Assembly High-Level Meeting on Ending AIDS and its political declaration. It provides all actors in the field with guidance to overcome the challenges and to ensure effective country-led AIDS responses. The Global AIDS Strategy 2026-2031 includes new global targets for 2030 and resource needs estimates.
more
The paper “Artificial Intelligence for Public Health Surveillance in Africa: Applications and Opportunities” examines how artificial intelligence (AI) can improve public health systems across Africa, particularly in low-resource settings. It explores how machine learning and other AI techniques
...
are being used for disease detection, outbreak prediction, real-time surveillance, and health resource management.
The authors focus on major public health challenges such as HIV, cholera, Ebola, measles, tuberculosis, malaria, COVID-19, and mental health. Through numerous case studies, the paper shows that AI can enhance the accuracy and speed of disease detection, predict outbreaks more effectively than traditional methods, support vaccination strategies, and optimize healthcare resource allocation. At the same time, it discusses important barriers to implementation, including limited data quality, infrastructure constraints, ethical concerns, and shortages of technical expertise.
Overall, the paper highlights AI’s strong potential to strengthen disease surveillance and health outcomes in Africa while emphasizing the need for careful integration, improved data systems, and supportive policy frameworks.
more
The document Integrated Disease Surveillance and Response Technical Guidelines, Booklet Four: Sections 8 and 9 (Third Edition, 2019) provides guidance for strengthening public health surveillance and response systems in the WHO African Region. It focuses on monitoring, supervision, evaluation, and f
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eedback mechanisms to improve the performance and quality of Integrated Disease Surveillance and Response (IDSR) systems. The text outlines key surveillance core functions—such as case detection, reporting, data analysis, outbreak investigation, preparedness, response, and feedback—and introduces indicators to measure system effectiveness, including timeliness, completeness, and data quality. Additionally, it discusses the implementation of electronic IDSR (eIDSR) to enhance real-time reporting and outbreak management. Overall, the booklet aims to strengthen early detection, rapid response, and health security capacity across all levels of the health system.
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(GPMP) Guide 2021
This report examines how clinical trials contribute to environmental impacts and outlines key considerations for integrating environmental sustainability into trial design, conduct and oversight. It explores the carbon footprint and resource use associated with clinical research activities – inclu
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ding site operations, participant travel, supply chains, data management and waste – and highlights how these impacts intersect with climate change risks to health systems and research infrastructure.
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World Health Organization (2018). A practical guide for developing and conducting simulation exercises to test and validate pandemic influenza preparedness plans.
The Health Emergency and Disaster Risk Management
Chan E.Y.Y., Huang Z., Hung K.K.C. et al
United Nations Office for Disaster Risk Reduction UNDRR
(2022)
CC
An emerging framework for achieving synergies among the Sendai Framework, the 2030 Agenda for Sustainable Development, the New Urban Agenda and the Paris Agreement. This paper discusses the potential of the Health Emergency and Disaster Risk Management (Health-EDRM) Framework in promoting syne
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rgies in pursing risk- resilient sustainable development pathways via conceptual analysis of the key roles of health and Health-EDRM in the major international risk-resilient and sustainable development agendas of the Sendai Framework, the 2030 Agenda for Sustainable Development, the New Urban Agenda and the Paris Agreement. It first analyses the Health-EDRM Framework, which is a comprehensive, systematic, cross-sectoral, and interdisciplinary endeavour of the World Health Organization and its health and non- health partners. The four key international risk-resilient and sustainable development agendas are then analysed in detail to explore how they can be interlinked and synergised under the Health-EDRM Framework.
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The decriminalization of drug use and possession for personal use, when implemented effectively, is a critical element in a human rights and public health-based HIV response. The group of countries that have adopted decriminalization models spans all continents. This document brings together differe
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nt approaches to and experiences of decriminalization of drug use and possession for personal use and provides recommendations for countries to ensure an enabling environment for the HIV response.
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The GHEC framework is designed to provide guiding principles for standardizing health emergency workforce structures to strengthen the capacity of countries in responding to health emergencies, and to enhance collaboration between countries by better connecting regional and global surge response mec
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hanisms, facilitating information exchange, and improving access to expertise and human response capacity at times of need.
This is the first version of the GHEC framework and is intended to be updated as experience is gained with its implementation and adaptation.
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This guidance addresses one type of generative AI, large multi-modal models (LMMs), which can accept one or more type of data input and generate diverse outputs that are not limited to the type of data fed into the algorithm. It has been predicted that LMMs will have wide use and application in heal
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th care, scientific research, public health and drug development. LMMs are also known as “general-purpose foundation models”, although it is not yet proven whether LMMs can accomplish a wide range of tasks and purposes.
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This report developed by UNAIDS and the United for Global Mental Health reviews and maps Global Fund investments in priority HIV and TB comorbidities in Grant Cycle 7 (GC7), including key non-communicable diseases (NCDs), cervical, anorectal and other cancers, and mental health and substance use co
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nditions. It highlights how countries prioritize and are integrating health services and other interventions with HIV and TB programmes to advance person-centered approaches and to sustain HIV and TB responses. Analyzing approved grants from 103 countries, the report finds strong demand for integrated approaches, with 97% of countries prioritizing at least one comorbidity.
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The compendium compiles practical case studies on the use of Geospatial Artificial Intelligence (GeoAI) to enhance disaster risk reduction and emergency response across diverse geographic and institutional contexts.
The compendium features selected case studies submitted by twenty-seven Regional Su
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pport Offices (RSOs) working across Asia, Africa, Latin America, and Europe. These examples highlight how GeoAI, is being used to forecast floods, map wildfire risk, assess landslide susceptibility, monitor droughts, and support emergency response. Each project demonstrates how cloud-based platforms and machine learning tools help governments act faster and more precisely when disaster strike.
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This edition provides detailed guidance on essential components such as infrastructure, human resources, equipment, logistics, governance, and monitoring and evaluation (M&E). These elements are crucial for the successful establishment and sustainable operation of NPHIs, which are envisioned as Cent
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res of Excellence for public health in Africa.
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This document suggests mechanisms that countries can use to respond to emergencies and disasters taking a whole of society and whole of government approach ensuring multisectoral engagement for health actions. It helps to run a participatory process of developing the national health response operati
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ons plan that brings together all relevant sectors, public health experts, civil society and the international community under government leadership and facilitate ownership, adoption, testing through simulation and finally successful implementation in responding to emergencies and disasters from multiple hazards.
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This guidance document, titled 'Preparedness Enabler's Guide (PEG)', published in May 2023, aims to promote effective and sustainable localization in humanitarian preparedness through insights and practical tools derived from the Global Logistics Cluster's experience.
Lancet. 2019; 394: 1212-1214